突变
背景(考古学)
计算机科学
计算生物学
限制
集合(抽象数据类型)
过程(计算)
蛋白质设计
蛋白质稳定性
理论(学习稳定性)
系统生物学
突变体
蛋白质工程
生物
合成生物学
分布式计算
机器学习
蛋白质结构
遗传学
工程类
古生物学
程序设计语言
生物化学
酶
机械工程
细胞生物学
操作系统
基因
作者
Taylor B. Dolberg,Anthony Meger,Jonathan Boucher,William K. Corcoran,Elizabeth E. Schauer,Alexis N. Prybutok,Srivatsan Raman,Joshua N. Leonard
标识
DOI:10.1038/s41589-020-00729-8
摘要
Splitting bioactive proteins into conditionally reconstituting fragments is a powerful strategy for building tools to study and control biological systems. However, split proteins often exhibit a high propensity to reconstitute, even without the conditional trigger, limiting their utility. Current approaches for tuning reconstitution propensity are laborious, context-specific or often ineffective. Here, we report a computational design strategy grounded in fundamental protein biophysics to guide experimental evaluation of a sparse set of mutants to identify an optimal functional window. We hypothesized that testing a limited set of mutants would direct subsequent mutagenesis efforts by predicting desirable mutant combinations from a vast mutational landscape. This strategy varies the degree of interfacial destabilization while preserving stability and catalytic activity. We validate our method by solving two distinct split protein design challenges, generating both design and mechanistic insights. This new technology will streamline the generation and use of split protein systems for diverse applications. A computational design strategy guided by biophysical principles enables engineering of split protein systems to tune their degree of interfacial destabilization, and thus reconstitution propensity, while preserving stability and catalytic activity.
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